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Diagnostic classification of Parkinson's disease based on non-motor manifestations and machine learning strategies.

Authors :
Martinez-Eguiluz, Maitane
Arbelaitz, Olatz
Gurrutxaga, Ibai
Muguerza, Javier
Perona, Iñigo
Murueta-Goyena, Ane
Acera, Marian
Del Pino, Rocío
Tijero, Beatriz
Gomez-Esteban, Juan Carlos
Gabilondo, Iñigo
Source :
Neural Computing & Applications. Mar2023, Vol. 35 Issue 8, p5603-5617. 15p.
Publication Year :
2023

Abstract

Non-motor manifestations of Parkinson's disease (PD) appear early and have a significant impact on the quality of life of patients, but few studies have evaluated their predictive potential with machine learning algorithms. We evaluated 9 algorithms for discriminating PD patients from controls using a wide collection of non-motor clinical PD features from two databases: Biocruces (96 subjects) and PPMI (687 subjects). In addition, we evaluated whether the combination of both databases could improve the individual results. For each database 2 versions with different granularity were created and a feature selection process was performed. We observed that most of the algorithms were able to detect PD patients with high accuracy (>80%). Support Vector Machine and Multi-Layer Perceptron obtained the best performance, with an accuracy of 86.3% and 84.7%, respectively. Likewise, feature selection led to a significant reduction in the number of variables and to better performance. Besides, the enrichment of Biocruces database with data from PPMI moderately benefited the performance of the classification algorithms, especially the recall and to a lesser extent the accuracy, while the precision worsened slightly. The use of interpretable rules obtained by the RIPPER algorithm showed that simply using two variables (autonomic manifestations and olfactory dysfunction), it was possible to achieve an accuracy of 84.4%. Our study demonstrates that the analysis of non-motor parameters of PD through machine learning techniques can detect PD patients with high accuracy and recall, and allows us to select the most discriminative non-motor variables to create potential tools for PD screening. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09410643
Volume :
35
Issue :
8
Database :
Academic Search Index
Journal :
Neural Computing & Applications
Publication Type :
Academic Journal
Accession number :
162135233
Full Text :
https://doi.org/10.1007/s00521-022-07256-8